Nieinwazyjny interfejs mózg–komputer do zastosowań technicznych

pol Article in Polish DOI: 10.14313/PAR_217/5

send Alicja Cegielska , Mariusz Olszewski Politechnika Warszawska, Wydział Mechatroniki, Instytut Automatyki i Robotyki

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Streszczenie

Celem opracowania jest zwięzłe opisanie zasad działania interfejsu mózg–komputer i przedstawienie jego możliwych zastosowań technicznych. Jest to współcześnie intensywnie rozwijany system mechatroniczny mierzący aktywność mózgu i generujący na jej podstawie sygnały sterujące dla urządzeń i maszyn. W artykule zawarto podstawowe informacje na temat ludzkiego mózgu, metod pomiaru jego aktywności, przetwarzania i klasyfikacji sygnałów. Przedstawiono różne możliwości realizacji interfejsu i jego zastosowania techniczne.

Słowa kluczowe

aktywność mózgu, elektroencefalografia, interfejs mózg-komputer, sterowanie za pomocą ludzkiego mózgu

Noninvasive brain–computer interfaces for technical applications

Abstract

The aim of this paper is to briefly describe principles of brain–computer interface and presentation of its possible technical applications. At this point in time is in mechatronics an intensively developing system, that measures brain activity and on this basis generates control signals for devices or machines. This article contains basic information about the human brain, its activity and measurement methods, processing and classification of signals. Different abilities were presented to the realization of the interface and using it technical.

Keywords

brain activity, brain–computer interface, control by the human brain, electroencephalography

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